基于粗糙集理论和支持向量机的信用风险评估方法

Jian-guo Zhou, Zhaoming Wu, Chenguang Yang, Qi Zhao
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引用次数: 10

摘要

针对商业银行信用风险评估的现状,将粗糙集方法与支持向量机(SVM)相结合,将混合智能系统应用于商业银行信用风险评估研究。信息表可以简化,表明粗糙集方法减少了财务比率、定性变量等评价标准的数量,且没有信息损失。然后,利用约简信息表制定分类规则,训练支持向量机。混合系统的合理性在于使用了粗糙集和支持向量机形成的规则。前者用于匹配任何规则的对象,后者用于不匹配任何规则的对象。通过与传统判别分析模型和BP神经网络的对比实验,验证了该方法的有效性
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The Integrated Methodology of Rough Set Theory and Support Vector Machine for Credit Risk Assessment
According to the current situation of the credit risk assessment in commercial banks, a hybrid intelligent system is applied to the study of credit risk assessment in commercial banks, combining rough set approach and support vector machine (SVM). The information table can be reduced, which showed that the number of evaluation criteria such as financial ratios and qualitative variables was reduced with no information loss through rough set approach. And then, the reduced information table is used to develop classification rules and train SVM. The rationality of hybrid system is using rules developed by rough sets and SVM. The former is for an object that matches any of the rules and the latter is for one that does not match any of them. The effectiveness of the methodology was verified by experiments comparing traditional discriminant analysis model and BP neural networks with our approach
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